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利用深度学习从日常生活图像中识别吸烟环境。

Identifying Smoking Environments From Images of Daily Life With Deep Learning.

机构信息

Department of Psychiatry and Behavioral Sciences, Duke University School of Medicine, Durham, North Carolina.

Department of Biostatistics and Bioinformatics, Duke University School of Medicine, Durham, North Carolina.

出版信息

JAMA Netw Open. 2019 Aug 2;2(8):e197939. doi: 10.1001/jamanetworkopen.2019.7939.

Abstract

IMPORTANCE

Environments associated with smoking increase a smoker's craving to smoke and may provoke lapses during a quit attempt. Identifying smoking risk environments from images of a smoker's daily life provides a basis for environment-based interventions.

OBJECTIVE

To apply a deep learning approach to the clinically relevant identification of smoking environments among settings that smokers encounter in daily life.

DESIGN, SETTING, AND PARTICIPANTS: In this cross-sectional study, 4902 images of smoking (n = 2457) and nonsmoking (n = 2445) locations were photographed by 169 smokers from Durham, North Carolina, and Pittsburgh, Pennsylvania, areas from 2010 to 2016. These images were used to develop a probabilistic classifier to predict the location type (smoking or nonsmoking location), thus relating objects and settings in daily environments to established smoking patterns. The classifier combines a deep convolutional neural network with an interpretable logistic regression model and was trained and evaluated via nested cross-validation with participant-wise partitions (ie, out-of-sample prediction). To contextualize model performance, images taken by 25 randomly selected participants were also classified by smoking cessation experts. As secondary validation, craving levels reported by participants when viewing unfamiliar environments were compared with the model's predictions. Data analysis was performed from September 2017 to May 2018.

MAIN OUTCOMES AND MEASURES

Classifier performance (accuracy and area under the receiver operating characteristic curve [AUC]), comparison with 4 smoking cessation experts, contribution of objects and settings to smoking environment status (standardized model coefficients), and correlation with participant-reported craving.

RESULTS

Of 169 participants, 106 (62.7%) were from Durham (53 [50.0%] female; mean [SD] age, 41.4 [12.0] years) and 63 (37.3%) were from Pittsburgh (31 [51.7%] female; mean [SD] age, 35.2 [13.8] years). A total of 4902 images were available for analysis, including 3386 from Durham (mean [SD], 31.9 [1.3] images per participant) and 1516 from Pittsburgh (mean [SD], 24.1 [0.5] images per participant). Images were evenly split between the 2 classes, with 2457 smoking images (50.1%) and 2445 nonsmoking images (49.9%). The final model discriminated smoking vs nonsmoking environments with a mean (SD) AUC of 0.840 (0.024) (accuracy [SD], 76.5% [1.6%]). A model trained only with images from Durham participants effectively classified images from Pittsburgh participants (AUC, 0.757; accuracy, 69.2%), and a model trained only with images from Pittsburgh participants effectively classified images from Durham participants (AUC, 0.821; accuracy, 75.0%), suggesting good generalizability between geographic areas. Only 1 expert's performance was a statistically significant improvement compared with the classifier (α = .05). Median self-reported craving was significantly correlated with model-predicted smoking environment status (ρ = 0.894; P = .003).

CONCLUSIONS AND RELEVANCE

In this study, features of daily environments predicted smoking vs nonsmoking status consistently across participants. The findings suggest that a deep learning approach can identify environments associated with smoking, can predict the probability that any image of daily life represents a smoking environment, and can potentially trigger environment-based interventions. This work demonstrates a framework for predicting how daily environments may influence target behaviors or symptoms that may have broad applications in mental and physical health.

摘要

重要性

与吸烟相关的环境会增加吸烟者的吸烟欲望,并可能在戒烟尝试期间引发复吸。从吸烟者日常生活中的图像中识别吸烟风险环境,为基于环境的干预措施提供了基础。

目的

应用深度学习方法,从吸烟者日常生活中遇到的环境中识别出与吸烟相关的环境。

设计、地点和参与者:在这项横断面研究中,从北卡罗来纳州达勒姆和宾夕法尼亚州匹兹堡地区的 169 名吸烟者在 2010 年至 2016 年期间拍摄了 4902 张吸烟(n=2457)和不吸烟(n=2445)地点的照片。这些图像被用于开发一个概率分类器,以预测地点类型(吸烟或不吸烟地点),从而将日常生活环境中的物体和环境与既定的吸烟模式联系起来。该分类器结合了深度卷积神经网络和可解释的逻辑回归模型,并通过参与者分区的嵌套交叉验证(即,样本外预测)进行训练和评估。为了使模型性能具体化,还由 25 名随机选择的参与者拍摄的图像由戒烟专家进行分类。作为二次验证,当参与者查看不熟悉的环境时报告的渴望水平与模型的预测进行了比较。数据分析于 2017 年 9 月至 2018 年 5 月进行。

主要结果和措施

分类器性能(准确性和接受者操作特征曲线下的面积[AUROC]),与 4 名戒烟专家的比较,对象和环境对吸烟环境状态的贡献(标准化模型系数),以及与参与者报告的渴望的相关性。

结果

在 169 名参与者中,有 106 名(62.7%)来自达勒姆(53 名[50.0%]女性;平均[SD]年龄,41.4[12.0]岁),63 名(37.3%)来自匹兹堡(31 名[51.7%]女性;平均[SD]年龄,35.2[13.8]岁)。共有 4902 张图像可供分析,其中 3386 张来自达勒姆(平均[SD],每个参与者 31.9[1.3]张图像),1516 张来自匹兹堡(平均[SD],每个参与者 24.1[0.5]张图像)。这两个类别的图像平分秋色,吸烟图像 2457 张(50.1%),不吸烟图像 2445 张(49.9%)。最终模型以 0.840(0.024)(准确性[SD],76.5%[1.6%])的平均(SD)AUROC 区分了吸烟与非吸烟环境。仅使用达勒姆参与者的图像训练的模型可以有效地对匹兹堡参与者的图像进行分类(AUROC,0.757;准确性,69.2%),仅使用匹兹堡参与者的图像训练的模型可以有效地对达勒姆参与者的图像进行分类(AUROC,0.821;准确性,75.0%),这表明在地理区域之间具有良好的可推广性。只有 1 名专家的表现与分类器相比具有统计学意义上的提高(α=0.05)。中位数自我报告的渴望与模型预测的吸烟环境状态显著相关(ρ=0.894;P=0.003)。

结论和相关性

在这项研究中,日常生活环境的特征在参与者中一致预测了吸烟与非吸烟状态。研究结果表明,深度学习方法可以识别与吸烟相关的环境,可以预测日常生活中任何图像代表吸烟环境的概率,并可能引发基于环境的干预措施。这项工作展示了一种预测日常环境如何影响目标行为或症状的框架,该框架可能在心理健康和身体健康方面有广泛的应用。

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